In this paper we discuss consistency of the posterior distribution in cases where the Kullback-Leibler condition is not verified. This condition is stated as : for all $\epsilon > 0$ the prior probability of sets in the form $\{f ; KL(f0 , f ) \leq \epsilon\}$ where KL(f0 , f ) denotes the Kullback-Leibler divergence between the true density f0 of the observations and the density f , is positive. This condi- tion is in almost cases required to lead to weak consistency of the posterior distribution, and thus to lead also to strong consistency. However it is not a necessary condition. We therefore present a new condition to replace the Kullback-Leibler condition, which is usefull in cases such as the estimation of decreasing densities. We the...
We consider the problem of estimating a compactly supported density taking a Bayesian nonparametric ...
In this paper, we highlight properties of Bayesian models in which the prior puts positive mass on a...
The past decade has seen a remarkable development in the area of Bayesian nonparametric inference fr...
International audienceAbstract In this paper we discuss consistency of the posterior distribution in...
International audienceAbstract In this paper we discuss consistency of the posterior distribution in...
International audienceAbstract In this paper we discuss consistency of the posterior distribution in...
International audienceAbstract In this paper we discuss consistency of the posterior distribution in...
International audienceAbstract In this paper we discuss consistency of the posterior distribution in...
International audienceIn this paper, we consider the well known problem of estimating a density func...
In this paper, we consider the well known problem of estimating a density function under qualitative...
Rates of convergence of Bayesian nonparametric procedures are expressed as the maximum between two r...
Rates of convergence of Bayesian nonparametric procedures are expressed as the maximum between two r...
Rates of convergence of Bayesian nonparametric procedures are expressed as the maximum between two r...
We consider the problem of estimating a compactly supported density taking a Bayesian nonparametric ...
We consider the problem of estimating a compactly supported density taking a Bayesian nonparametric ...
We consider the problem of estimating a compactly supported density taking a Bayesian nonparametric ...
In this paper, we highlight properties of Bayesian models in which the prior puts positive mass on a...
The past decade has seen a remarkable development in the area of Bayesian nonparametric inference fr...
International audienceAbstract In this paper we discuss consistency of the posterior distribution in...
International audienceAbstract In this paper we discuss consistency of the posterior distribution in...
International audienceAbstract In this paper we discuss consistency of the posterior distribution in...
International audienceAbstract In this paper we discuss consistency of the posterior distribution in...
International audienceAbstract In this paper we discuss consistency of the posterior distribution in...
International audienceIn this paper, we consider the well known problem of estimating a density func...
In this paper, we consider the well known problem of estimating a density function under qualitative...
Rates of convergence of Bayesian nonparametric procedures are expressed as the maximum between two r...
Rates of convergence of Bayesian nonparametric procedures are expressed as the maximum between two r...
Rates of convergence of Bayesian nonparametric procedures are expressed as the maximum between two r...
We consider the problem of estimating a compactly supported density taking a Bayesian nonparametric ...
We consider the problem of estimating a compactly supported density taking a Bayesian nonparametric ...
We consider the problem of estimating a compactly supported density taking a Bayesian nonparametric ...
In this paper, we highlight properties of Bayesian models in which the prior puts positive mass on a...
The past decade has seen a remarkable development in the area of Bayesian nonparametric inference fr...